论文标题
CIMON:迈向高质量的哈希代码
CIMON: Towards High-quality Hash Codes
论文作者
论文摘要
最近,哈希广泛用于近似最近的邻居搜索其存储和计算效率。大多数无监督的哈希方法都学会通过从预训练的模型中构造局部语义相似性结构作为指导信息,即,即如果它们的距离在特征空间很小,则将图像映射到语义相似性的哈希码中。但是,由于预先训练的模型的表示能力效率低下,将引入许多局部语义相似性中的许多假阳性和负面因素,并导致哈希代码学习期间的错误传播。此外,很少有方法认为模型的鲁棒性,这会导致哈希码的不稳定性。在本文中,我们提出了一种名为{\ textbf {c}}的新方法,使S {\ textbf {i}} Milarity {\ textbf {m}} ining和c {\ textbf {textbf {o}}首先,我们使用全球改进和相似性统计分布来获得可靠且平稳的指导。其次,引入语义和对比的一致性学习,以得出不变和歧视性哈希码。在几个基准数据集上进行的广泛实验表明,该提出的方法在检索性能和鲁棒性方面都优于各种最新方法。
Recently, hashing is widely used in approximate nearest neighbor search for its storage and computational efficiency. Most of the unsupervised hashing methods learn to map images into semantic similarity-preserving hash codes by constructing local semantic similarity structure from the pre-trained model as the guiding information, i.e., treating each point pair similar if their distance is small in feature space. However, due to the inefficient representation ability of the pre-trained model, many false positives and negatives in local semantic similarity will be introduced and lead to error propagation during the hash code learning. Moreover, few of the methods consider the robustness of models, which will cause instability of hash codes to disturbance. In this paper, we propose a new method named {\textbf{C}}omprehensive s{\textbf{I}}milarity {\textbf{M}}ining and c{\textbf{O}}nsistency lear{\textbf{N}}ing (CIMON). First, we use global refinement and similarity statistical distribution to obtain reliable and smooth guidance. Second, both semantic and contrastive consistency learning are introduced to derive both disturb-invariant and discriminative hash codes. Extensive experiments on several benchmark datasets show that the proposed method outperforms a wide range of state-of-the-art methods in both retrieval performance and robustness.